A Primary-Secondary Foreground Segmentation Method with Window Series PCA De-noising
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Graphical Abstract
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Abstract
Noise characteristic and motion properties of different foreground objects under various weather conditions are analyzed for outdoor videos, and a primary-secondary foreground segmentation method is proposed.A window series PCA algorithm, combined with the Gaussian mixture model, is used to model the videos after de-nosing and segmenting all foreground objects primarily.After that, the probabilities of the overlapped regions are calculated to describe the motion properties of different objects, and a second segmentation step is carried out to extract the interesting objects.Finally, the uninteresting objects, such as raindrops and snowflakes, are treated via a background-inpainting step to improve the video quality.Experimental results show that our proposed method can effectively reduce noise, diminish the interference of rain or snow, and enhance video effects.
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